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Gene expression studies of breast tumors with different responses to immunotherapy Elizabeth Chun MSc. Candidate Jones Lab, The Genome Sciences Centre 2009. 11. 26. Adoptive T-cell Transfer Immunotherapy 1. Isolation of antigen-specific Tlymphocytes from a cancer patient Ex vivo expansion and activation of T-lymphocytes Transfer of anti-tumor T-lymphocytes back to the patient 2. 3. • Several attractive tumor antigens e.g. Her2/neu Low efficacy of immunotherapy • – Many factors limiting immune response Gattinoni L. et al. (2006) Nature Reviews in Immunology. 6:383-393. Mouse model ACT Cysteinerich domain Extracellular CR Tyrosinekinase domain NOP-21 PR CD8+ epitope Neu+/p53- mouse CD4+ epitope C57BL/6J PD NOP-12, 23 NOP-6,17,18 NOP cell lines generated Affymetrix MoEx-1_0-st-v1 Neu+ mouse Mouse image from http://www.taconic.com/userassets/Images/Producs-Services/em_mod_black.jpg Mammary tumor image from http://www.nature.com/onc/journal/v25/n54/images/1209707 f4.jpg SOLiD sequencing – miRNA, transcriptome Affymetrix chip image from http://www.molecularstation.com/molecular-biologyimages/data/508/affymetrix-microarray.jpg Class specific DE genes • DE genes are detected by a bio-conductor tool, siggenes, using the Significance Analysis of Microarray (SAM) at FDR 10% or 15% • Detection of class-specific DE genes – the variation of gene expression between classes is greater than within the class – E.g. CR-specific DE genes E. g. PR-specific DE genes 4 4 4 3 3 3 3 2 2 2 2 1 1 1 1 0 0 CR PR PD 4 0 0 CR PR CR PD E.g. PD-specific DE genes PR CR PD 4 4 3 3 3 3 2 2 2 2 1 1 1 1 0 0 CR PR PD 0 CR PR PD ??? But interesting still… 4 4 PR PD 0 CR PR PD CR PR PD Overlap from pair-wise comparisons and combined classes • Overlap of the “class-specific” gene sets found by the two-way pair-wise comparison and the comparison against the combined classes CR-specific PR-specific 229 42 CR vs (PR and PD) CR vs PD (N= 293) (N = 1242) PR vs PD (N = 1466) PD-specific PR vs (CR and PD) PR vs PD (N= 47) (N = 1466) 899 PD vs (CR and PR) CR vs PD (N= 3601) (N = 1242) CR vs PR (N = 31) CR vs PD (N = 1242) Class-specific pathway analysis • Class-specific DE genes in CR and PD – CR: N = 229 – PD: N = 889 • DAVID (KEGG, BioCarta), Ingenuity tools used – Top pathways overlap in all three pathway databases • Common pathways found to be involved – Complement system: CR / PD – Pattern recognition: CR / PD – Stroma-related pathways: CR / PD • Class-specific pathways – CR-specific: TREM1 signaling; LXR/RXR activation – PD-specific: IL-3 signaling; FcyRIIB signaling; GM-CSF signaling; Leukocyte extravasation • 71 genes were selected for qRT-PCR by ranking by fold-change, involvement of > 1 pathways, found as good classifier by Predictive Analysis of Microarray (PAM) Comparison with the human breast tumor data Select genes with 1-to-1 orthologous relationship with human (N = 15K) 1300 human intrinsic breast cancer gene set by Hu et al. (2006) (Agilent) Collapse data from probe to gene level • Median for probes targeting a single gene Merge human (HG-U133A from Rouzier et al. (2005)) and mouse (MoEx) breast tumor expression data • Batch correction by DWD Filter out genes probed in both MoEx and HG-U133 arrays (N = 8852) 866 mouse intrinsic breast cancer gene set by Herschkowitz et al. (2007) (Agilent) Human 106 (1300) Mouse (866) Cross-species intrinsic breast cancer gene sets (N = 106) 82 genes common to mouse-human breast cancer intrinsic gene sets in the merged dataset Herschkowitz et al. (2007) Cluster analysis of mouse and human tumors • Hierarchical clustering on the subset of genes common to both species breast cancer intrinsic gene list PD PD Basal-like PD Luminal A CR PR PR Her2-overexp Lum B Lum A ER- = 17/17 (100%) ER+ = 11/13 (85%) ER- = 11/12 (92%) ER+ = 7/8 (88%) ER+ = 28/32 (88%) Her2- = 15/17 (88%) Her2- = 10/13 (77%) Her2+ = 8/12 (67%) Her2+ = 6/8 (75%) Her2- = 26/32 (81%) PR- = 13/17 (76%) PR- = 7/12 (58%) PR- = 11/12 (92%) PR+ = 6/8 (75%) PR+ = 19/30 (63%) Ongoing research • Improve cluster analysis of mouse and human breast cancer data • Experimental validation of pathway-specific, class-specific DE genes by RTqPCR • miRNA analysis from SOLiD data – Better alignment tools to account for adapter sequence – Identification of miRNA target genes and their functional enrichment – Correlation of target gene expression changes • WTSS data analysis from SOLiD data – Somatic point mutation survey of CR, PR, PD tumors – PCR validation of the putative mutations – Possible novel targets for tumor vaccine development Acknowledgement Supervisor SOLiD Library Construction & Sequencing • • • • • • Dr. Steven Jones Microarray Analysis • Dr. Allen Delaney Dr. Martin Hirst Yongjun Zhao Thomas Zeng Kevin Ma Angela Tam The Deeley Research Centre • • Dr. Brad Nelson Dr. Michele Martin SOLiD WTSS Analysis • • • Dr. Inanc Birol Nina Thiessen Timothee Cezard ABI bioinformatics support • Dr. Yongming Sun LIMS & Systems team at GSC